Classifier Systems Learning in Dynamic Environment
نویسنده
چکیده
1.1. Simple classifier system According to Holland [1], a non-learning classifier system consists of four principal components: 1. List of classifiers (population of classifiers) 2. List of messages that plays the role of a message board for communications and short term memory 3. Input interface (detector) that represents the environment state 4. Output interface (effector) that ensures interaction with the environment or its change.
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